露天采矿智能早期升温平台:现状与前景

Zhanping Song , Xu Li , Runke Huo , Lianbaochao Liu
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引用次数: 0

摘要

随着露天采矿作业深度的增加,地质灾害的发生频率也在增加。造成这些灾害的各种因素之间复杂的相互作用给预警和控制系统带来了技术挑战。然而,互联网、5G 网络和人工智能等新兴技术为构建综合数字预警平台提供了新的机遇,该平台可综合多方面的监测数据,预测和减轻露天矿山灾害。利用以互联网为媒介的高效信息集成,可以整合各种来源的数据,从而加强灾害管理。本文通过科学网数据库搜索相关文献,回顾了露天矿数字预警平台的现状。本文对这些平台的框架、数据层、技术层和应用层进行了研究,以确定相关技术和障碍。重要结果包括(1) 不一致的数据格式和监控软件降低了平台工作流程的效率。强大的数据交换协议和功能丰富的软件可以提高效率。(2) 平台依赖于有限的数据类型,而不是将各种监测输入整合到全球灾害预测中的智能算法。对人工智能、物联网和云计算等先进技术的利用不足。采矿灾害机理和岩石力学需要进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent early-warning platform for open-pit mining: Current status and prospects

As the profundity of open-pit mining operations has increased, so has the frequency of geological disasters. The complex interaction of factors causing these disasters presents technical challenges for early warning and control systems. However, emergent technologies such as the internet, 5G networks, and artificial intelligence provide new opportunities for constructing integrated digital early warning platforms that synthesise multifaceted monitoring data to predict and mitigate open-pit mine hazards. Using efficient Internet-mediated information integration, data from various sources can be consolidated for enhanced disaster management. This paper reviews the current state of digital early warning platforms for open-pit mines using a Web of Science database search for pertinent literature. The framework, data layer, technology layer, and application layer of these platforms are investigated in order to identify associated technologies and obstacles. Important results include: (1) Inconsistent data formats and monitoring software diminish platform workflow efficiency. Robust data exchange protocols and feature-rich software could increase efficiency. (2) Platforms rely on limited data types as opposed to intelligent algorithms that integrate diverse monitoring inputs into global disaster predictions. The underutilization of advanced technologies such as artificial intelligence, the internet of things, and cloud computing. Mining calamity mechanisms and rock mechanics require additional study.

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